Small-Area Analyses Using Public American Community Survey Data: A Tree-Based Spatial Microsimulation Technique

IF 2.4 2区 社会学 Q1 SOCIOLOGY
Nicholas Graetz, Kevin Ummel, Daniel Aldana Cohen
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引用次数: 4

Abstract

Quantitative sociologists and social policymakers are increasingly interested in local context. Some city-specific studies have developed new primary data collection efforts to analyze inequality at the neighborhood level, but methods from spatial microsimulation have yet to be broadly used in sociology to take better advantage of existing public data sets. The American Community Survey (ACS) is the largest household survey in the United States and indispensable for detailed analysis of specific places and populations. The authors propose a technique, tree-based spatial microsimulation, to produce “small-area” (census-tract) estimates of any person- or household-level phenomenon that can be derived from ACS microdata variables. The approach is straightforward and computationally efficient, based only on publicly available data, and it provides more reliable estimates than do prevailing methods of microsimulation. The authors demonstrate the technique’s capabilities by producing tract-level estimates, stratified by race/ethnicity, of (1) the proportion of people in the census-tract population who have children and work in an essential occupation and (2) the proportion of people in the census-tract population living below the federal poverty threshold and in a household that spends greater than 50 percent of monthly income on rent or owner costs. These examples are relevant to understanding the sociospatial inequalities dramatized by the coronavirus disease 2019 pandemic. The authors discuss potential extensions of the technique to derive small-area estimates of variables observed in surveys other than the ACS.
使用美国公共社区调查数据的小区域分析:基于树的空间微模拟技术
数量社会学家和社会政策制定者对当地环境越来越感兴趣。一些针对城市的研究开发了新的初级数据收集工作,以分析社区层面的不平等,但空间微观模拟的方法尚未在社会学中广泛使用,以更好地利用现有的公共数据集。美国社区调查(ACS)是美国最大的家庭调查,对具体地点和人口的详细分析不可或缺。作者提出了一种基于树的空间微观模拟技术,可以从ACS微观数据变量中得出任何个人或家庭层面现象的“小区域”(人口普查区)估计值。该方法简单明了,计算效率高,仅基于公开的数据,而且它提供了比主流微观模拟方法更可靠的估计。作者通过产生按种族/民族分层的地区水平估计来证明该技术的能力,(1)人口普查区人口中有孩子并从事基本职业的人的比例,以及(2)人口普查区人群中生活在联邦贫困线以下且家庭每月收入的50%以上用于租金或业主成本的比例。这些例子与理解2019冠状病毒病大流行所加剧的社会空间不平等有关。作者讨论了该技术的潜在扩展,以导出在ACS以外的调查中观察到的变量的小面积估计。
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来源期刊
CiteScore
4.50
自引率
0.00%
发文量
12
期刊介绍: Sociological Methodology is a compendium of new and sometimes controversial advances in social science methodology. Contributions come from diverse areas and have something useful -- and often surprising -- to say about a wide range of topics ranging from legal and ethical issues surrounding data collection to the methodology of theory construction. In short, Sociological Methodology holds something of value -- and an interesting mix of lively controversy, too -- for nearly everyone who participates in the enterprise of sociological research.
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